cs.AI updates on arXiv.org 10月30日 12:12
LLMs交易系统中的状态跟踪方法研究
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本文提出了一种名为Autoregressive State-Tracking Prompting (ASTP)的方法,旨在解决大型语言模型(LLMs)在规则化交易系统中无法遵循程序流程的问题,通过显式化状态跟踪过程和准确的价格计算,提升了交易对话的合规性和计算精度。

arXiv:2510.25014v1 Announce Type: new Abstract: Large Language Models (LLMs) enable dynamic game interactions but fail to follow essential procedural flows in rule-governed trading systems, eroding player trust. This work resolves the core tension between the creative flexibility of LLMs and the procedural demands of in-game trading (browse-offer-review-confirm). To this end, Autoregressive State-Tracking Prompting (ASTP) is introduced, a methodology centered on a strategically orchestrated prompt that compels an LLM to make its state-tracking process explicit and verifiable. Instead of relying on implicit contextual understanding, ASTP tasks the LLM with identifying and reporting a predefined state label from the previous turn. To ensure transactional integrity, this is complemented by a state-specific placeholder post-processing method for accurate price calculations. Evaluation across 300 trading dialogues demonstrates >99% state compliance and 99.3% calculation precision. Notably, ASTP with placeholder post-processing on smaller models (Gemini-2.5-Flash) matches larger models' (Gemini-2.5-Pro) performance while reducing response time from 21.2s to 2.4s, establishing a practical foundation that satisfies both real-time requirements and resource constraints of commercial games.

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LLMs 交易系统 状态跟踪 ASTP 计算精度
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